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A w eb - based Bio mass S ite A ssessment T ool. version 1.0. Timothy M. Young, PhD - UT James H. Perdue – USFS Andy Hartsell - USFS Donald G. Hodges, PhD – UT Robert C. Abt, PhD - NCSU Timothy G. Rials, PhD – UT. The University of Tennessee Southeastern Sun Grant Center
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A web-basedBiomassSiteAssessmentTool version 1.0 Timothy M. Young, PhD - UT James H. Perdue – USFS Andy Hartsell - USFSDonald G. Hodges, PhD – UT Robert C. Abt, PhD - NCSU Timothy G. Rials, PhD – UT The University of Tennessee Southeastern Sun Grant Center Forest Products Center U.S. Forest Service Southern Research Station IEA Bioenergy “Biofuels & Bioenergy – A Changing Climate”August 23-26, 2009 – Vancouver, British Columbia
Motivation Bioenergy and biofuels are emerging industries that require an economic-based decision-making framework and easily accessible tools to assist in plant site location
Problem Definition Develop a web-based economic decision-making model for cellulose resources that exists in the public domain with quasi real-time data update capabilities Phase I: woody and ag cellulose, geo-referenced aggregate supply curves, develop web-site - www.BioSAT.net Phase II: stochastic-based site selection, market constraints (price elasticities, policy influence, some sustainability criteria) Phase III: integration with larger KDF
Phase I Objectives Develop SQL database of resource data Forest – USFS FIA Mill Residues – USFS FIA Logging Residues – SRTS Urban Waste – BT2 Ag Residues - NASS Develop wood resource costs Timber Mart South State reports Develop truck transportation models Develop harvesting cost models FRCS for logging residues (Dennis Dykstra) AHA for merchantable wood (Bob Rummer/Dale Greene)
Phase I Objectives Develop web-based system in the public domain (www.BioSAT.net) Develop a web-based system with quasi real-time data update capabilities, e.g., Diesel prices (US DOE EIA) Resource costs (TMS, State Reports) Road network (MapPoint 2006) Resource data (USFS FIA, SRTS, BT2) etc. Scope: 33 Eastern United States Resolution: 24,975 Zip Code Tabulation Areas (ZCTA)
Database DevelopmentFusion of Phase I data layers Forest Cover Data Economic Data Polygon Boundaries Siting Solution Phase I Supply Curves SQL Relational Database
MethodsBiomass Quantity Physical Biomass: Logging Residues (hardwood, softwood) (at landing, in-woods) Mill Residues (clean, unclean) Urban Waste Thinnings Merchantable (pulpwood and sawtimber) Initially, for any demand ZCTA the “physical biomass” available is the sum of “physical biomass” in nearest neighbor ZCTAs for up to a 40, 80, 120, or 160 mile one-way haul distances
MethodsNearest Neighbor ZCTAs For any demand ZCTA, nearest neighbor supply ZCTAs are computed from the change in longitudes and latitudes: D = (M ×Dt)2 + (N × cos t × Dl)2 • where t - mean latitude • Dt - difference in latitude • Dl - difference inlongitude (in radians) • M - Earth's radius of curvature in the (north-south) meridian at t • N - radius of curvature in the prime normal to M at t
MethodsFinal Selectionof Neighboring ZCTAs (“Bioshed”) • For each potential neighboring supply ZCTA, the driving time and distance are calculated from • Microsoft MapPoint 2006 • Geographic Data Technology, Inc. (GDT) • data are used for rural areas and small to • medium size cities • Navteq data are used for major • metropolitan areas. • Next, ZCTAs beyond 5-hour one-way haul are • eliminated (assume day-cab trucks with legal driving maximum of 11 hours)
MethodsResource Costs South (Timber Mart South www.tmart-south.com ) Mill Residues Clean/Unclean Pulpwood Softwood/Hardwood Sawtimber Softwood/Hardwood Biomass North (State Reporting Services) Connecticut (pulpwood, sawtimber, biomass) http://forest.fnr.umass.edu/snespsr/reports/all%20reports.htm Maine (pulpwood, sawtimber, biomass) http://www.state.me.us/doc/mfs/pubs/annpubs.htm#stump etc.
MethodsTrucking Cost ModelEnhancementofBerwack et al. 2003(dry van, live bottom van, longwood log trailer, shortwood log trailer) • Total Cost (a, d, t) = Variable Cost (d, t) + Fixed Cost (a, d, t) • where, a = annual miles • d = travel distance (miles) • t = travel time (hours) Validation assuming a contract fleet: three trucking companies and one forest products company (4 mills): ± 2%
MethodsTrucking Cost Model Fixed Cost = S (Equipment Cost, State Tax, State License Fee, Overhead Cost, Insurance Premium)/a x d Variable Cost = Fuel Cost (c, d, g, j, k) + Labor Cost (i, w) + Tire Cost (c, m, n, r) + Maintenance and Repair Cost (b, c, v) where, b = repair cost per mile c = time loaded (%) g = diesel price per gallon i = labor time (hours) j = loaded truck miles/gallon k = empty truck miles/gallon m = miles/tire n = number of tires r = tire cost v = gross vehicle weight w = wage rate User can use model default values or enter their own inputs
MethodsHarvesting Cost Models Fuel Reduction Cost Simulator (FRCS) – BT2 Dennis Dykstra Logging Residue Costs(at-landing, in-woods) Auburn Harvest Analyzer (AHA) Bob Rummer and Dale Greene Pulpwood Costs Sawtimber Costs Thinning Costs
Resultslow cost biosheds for 11 southern state(Mill residues ≤ 1.5 M Dry tons / year)
RESULTSMS – Top Five Demand ZCTAs for Mill Residues (≤ 1.5 M Dry Tons per Year) T2. 38879 (Lee Co.) T2. 38864 (Pontotoc Co.) 1. 38916 (Calhoun Co.) T2. 39094 (Leake Co.) 5. 39476 (Perry Co.)
RESULTSMS – Top Five Demand ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
RESULTSMS – Top Five Demand ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
ResultsNC - Top Five Demand ZCTAs for Mill Residues(≤ 1.5 M Dry Tons per Year) 27355 (Randolph County) 27248 (Randolph County) 27316 (Randolph County) 27207 (Chatham County) 27213 (Chatham County)
ResultsNC - Top Five Demand ZCTAs for Mill Residues(≤ 1.5 M Dry Tons per Year)
RESULTSNC – Top Five Demand ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
RESULTSNC – Top Five Demand ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
ResultsNC - Top Five Demand ZCTAs for Mill Residues(≤ 1.5 M Dry Tons per Year)
RESULTSNC – “De-clustered” ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
RESULTSNC – “De-clustered” ZCTAs MC Curves (≤ 1.5 M Dry Tons per Year)
RESULTSLow cost biosheds for 9 southern state(Logging residues “at-landing” ≤ 1.5 M Dry tons / year)
RESULTSMS - Least Cost LoggingResidue (“at-landing”) Bioshed (≤ 1.5 M Dry Tons per Year)
RESULTSMS - Least Cost Logging Residue (“at-landing”) Bioshed (≤ 1.5 M Dry Tons per Year)
RESULTSMS - Least Cost Logging Residue (“at-landing”) Bioshed (≤ 1.5 M Dry Tons per Year)
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Summary www.BioSAT.netversion 1.0 provides an economic decision-making framework and tool for identifying least cost woody and ag cellulose demand sites for 33 eastern states mill residues, logging residues, and ag residues resource costs, transportation costs, harvesting costs Validation is on-going Web-site nears beta-ready
Future Research • Merchantable wood costing • Ag cellulose resource database • Ag cellulose costing • Resource, harvest, transport • Railroad networks and intra-modal • transfer points • Water availability • Wood using facilities (competition) • Stochastic-model site selection • Policy influence • Sustainability criteria • Population data, climatology data, fragmentation, etc.
Acknowledgements USDA Forest Service Southern Research Station USDA Forest Service Dennis Dykstra and Bob Rummer US DOT Southeastern Sun Grant Center University of Tennessee Office of Bioenergy Programs Sam Jackson, Research Assistant Professor Bob Longmire, Graphic Design Sachiko Hurst, Programmer University of Tennessee Agricultural Experiment Station Kerri Norris, Research Associate Christy Pritchard, Research Associate Xu (Nancy) Liu, GRA Yingjin Wang, former GRA University of Tennessee College of Business (Frank Guess) North Carolina State University (Bob Abt) University of Georgia (Dale Greene)